NADSLGOCFeb 5, 2019

Riemannian optimization with a preconditioning scheme on the generalized Stiefel manifold

arXiv:1902.01635v42 citations
Originality Incremental advance
AI Analysis

This work addresses efficiency issues in optimization for applications such as eigenvalue problems and deep learning, but it is incremental as it builds on existing Riemannian optimization methods.

The paper tackles optimization problems on the generalized Stiefel manifold, which are common in fields like computational science and machine learning, by developing Riemannian optimization with a preconditioning scheme to address computational expense and slow convergence, resulting in theoretical and numerical improvements.

Optimization problems on the generalized Stiefel manifold (and products of it) are prevalent across science and engineering. For example, in computational science they arise in symmetric (generalized) eigenvalue problems, in nonlinear eigenvalue problems, and in electronic structures computations, to name a few problems. In statistics and machine learning, they arise, for example, in various dimensionality reduction techniques such as canonical correlation analysis. In deep learning, regularization and improved stability can be obtained by constraining some layers to have parameter matrices that belong to the Stiefel manifold. Solving problems on the generalized Stiefel manifold can be approached via the tools of Riemannian optimization. However, using the standard geometric components for the generalized Stiefel manifold has two possible shortcomings: computing some of the geometric components can be too expensive and convergence can be rather slow in certain cases. Both shortcomings can be addressed using a technique called Riemannian preconditioning, which amounts to using geometric components derived by a precoditioner that defines a Riemannian metric on the constraint manifold. In this paper we develop the geometric components required to perform Riemannian optimization on the generalized Stiefel manifold equipped with a non-standard metric, and illustrate theoretically and numerically the use of those components and the effect of Riemannian preconditioning for solving optimization problems on the generalized Stiefel manifold.

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